基于叠加训练的协同频谱感知性能分析

Lizeth Lopez-Lopez, M. Cardenas-Juarez, E. Stevens-Navarro, A. García-Barrientos, Rafael Aguilar-Gonzalez, R. Sámano-Robles
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引用次数: 1

摘要

叠加训练(ST)技术可用于主要用户的发射机,以改善主要用户接收机的参数估计任务(如信道估计)。由于ST将训练序列添加到数据序列中,因此总可用带宽用于数据传输。在认知无线电网络中利用ST序列可以显著提高在极低信噪比区域操作的二次用户的检测性能。因此,传感所需的样品数量要少得多。研究了一种带有软决策融合的协作式集中式认知无线电网络中基于st的频谱感知性能。此外,还进行了吞吐量分析,以量化在认知无线电背景下对主要和次要用户使用ST的好处。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Performance analysis of superimposed training-based cooperative spectrum sensing
Superimposed training (ST) technique can be used at primary users' transmitters to improve parameter estimation tasks (e.g. channel estimation) at primary users' receivers. Since ST adds the training sequence to the data sequence the total available bandwidth is used for data transmission. The exploitation of the ST sequence in the context of cognitive radio networks leads to a significant increase in the detection performance of secondary users operating in the very low signal-to-noise ratio region. Hence, a considerably smaller number of samples are required for sensing. In this paper, the performance of ST-based spectrum sensing in a cooperative centralized cognitive radio network with soft-decision fusion is studied. Furthermore, a throughput analysis is carried out to quantify the benefits of using ST in the context of cognitive radio for both primary and secondary users.
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